Literature DB >> 31486961

In silico prediction of drug-induced developmental toxicity by using machine learning approaches.

Hui Zhang1,2, Jun Mao3, Hua-Zhao Qi3, Lan Ding4.   

Abstract

Some drugs and xenobiotics have the potential to disturb homeostasis, normal growth, differentiation, development or behavior during prenatal development or postnatally until puberty. Assessment of the developmental toxicity is one of the important safety considerations incorporated by international regulatory agencies. In this investigation, seven machine learning methods, including naïve Bayes, support vector machine, recursive partitioning, k-nearest neighbor, C4.5 decision tree, random forest and Adaboost, were used to build binary classification models for developmental toxicity. Among these models, the naïve Bayes classifier represented the best predictive performance and stability, which gave 91.11% overall prediction accuracy, 91.50% balanced accuracy and 0.818 MCC for the training set, and generated 83.93% concordance, 81.85% balanced accuracy and 0.627 MCC for the test set. The application domains were analyzed, and only one chemical in the test set was identified as outside the application domain. In addition, 10 important molecular descriptors related to developmental toxicity were selected by the genetic algorithm, which may contribute to explanation of the mechanisms of developmental toxicants. The best naïve Bayes classification model should be employed as alternative method for qualitative prediction of chemical-induced developmental toxicity in early stages of drug development.

Entities:  

Keywords:  Developmental toxicity; Genetic algorithm; In silico prediction; Machine learning; Molecular descriptor

Mesh:

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Year:  2019        PMID: 31486961     DOI: 10.1007/s11030-019-09991-y

Source DB:  PubMed          Journal:  Mol Divers        ISSN: 1381-1991            Impact factor:   2.943


  2 in total

1.  Predicting Prenatal Developmental Toxicity Based On the Combination of Chemical Structures and Biological Data.

Authors:  Heather L Ciallella; Daniel P Russo; Swati Sharma; Yafan Li; Eddie Sloter; Len Sweet; Heng Huang; Hao Zhu
Journal:  Environ Sci Technol       Date:  2022-04-22       Impact factor: 11.357

2.  In silico prediction models for thyroid peroxidase inhibitors and their application to synthetic flavors.

Authors:  Mihyun Seo; Changwon Lim; Hoonjeong Kwon
Journal:  Food Sci Biotechnol       Date:  2022-03-12       Impact factor: 2.391

  2 in total

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